A Review of Sampling and Modeling Techniques for Forest Biomass Inventory
Qianhe Village

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food security; nutrition; big food vision; policy and strategy

How to Cite

Wu, H., & Xu, H. (2023). A Review of Sampling and Modeling Techniques for Forest Biomass Inventory. Agricultural & Rural Studies, 1(1), 0002. https://doi.org/10.59978/ar01010002

Abstract

Forest biomass is the energy base and material source of forest ecosystem cycle, which is expressed by the dry matter weight or energy accumulated per unit area and time. It is also an important index to study the structure and function of forest ecosystem, and is the premise and basis of scientific management of forest ecosystem. In this paper, the concept, development history, and research status of forest biomass were reviewed. The sampling methods, model construction methods of forest biomass survey were analyzed. Finally, the research prospects and summaries of key technologies of forest biomass inventory and monitoring were put forward.

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References

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